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PanGu-Coder2: Boosting Large Language Models for Code with Ranking Feedback

27 July 2023
Bo Shen
Jiaxin Zhang
Taihong Chen
Daoguang Zan
Bing Geng
An Fu
Muhan Zeng
Ailun Yu
Jichuan Ji
Jingyang Zhao
Yuenan Guo
Qianxiang Wang
    ALM
    ELM
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Abstract

Large Language Models for Code (Code LLM) are flourishing. New and powerful models are released on a weekly basis, demonstrating remarkable performance on the code generation task. Various approaches have been proposed to boost the code generation performance of pre-trained Code LLMs, such as supervised fine-tuning, instruction tuning, reinforcement learning, etc. In this paper, we propose a novel RRTF (Rank Responses to align Test&Teacher Feedback) framework, which can effectively and efficiently boost pre-trained large language models for code generation. Under this framework, we present PanGu-Coder2, which achieves 62.20% pass@1 on the OpenAI HumanEval benchmark. Furthermore, through an extensive evaluation on CoderEval and LeetCode benchmarks, we show that PanGu-Coder2 consistently outperforms all previous Code LLMs.

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